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A weighted pseudo-Zernike feature for face recognition

机译:加权伪Zernike特征用于人脸识别

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Pseudo-Zernike polynomials are well known and widely used in the analysis of optical systems. In this paper, we introduce a weighted pseudo-Zernike feature for face recognition. The EA strategy is used to maximize the Fisher linear discriminant function (FLD) over the Pseudo-Zernike moments. The argument, which maximizes the FLD criteria, is selected as the proposed weight function. To evaluate the performance of the proposed feature, experimental studies are carried out on the ORL database images of Cambridge University. The numerical results show 97.75% recognition rate on the ORL database with the weighted pseudo-Zernike feature (with order 10) and 65, 146,40 neurons for the input, hidden, and output layers while this amount for the original pseudo-Zernike is 96.5%
机译:伪Zernike多项式是众所周知的,并广泛用于光学系统的分析中。在本文中,我们引入了加权伪Zernike特征进行人脸识别。 EA策略用于在伪Zernike矩上最大化Fisher线性判别函数(FLD)。选择最大化FLD标准的​​参数作为建议的权重函数。为了评估所提出功能的性能,对剑桥大学的ORL数据库图像进行了实验研究。数值结果表明,在具有加权伪Zernike特征(顺序为10)和输入层,隐藏层和输出层的65、146、40个神经元的ORL数据库上,ORL数据库的识别率为97.75%,而原始伪Zernike的数量为96.5%

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